Deep Learning for the Inverse Design of Mid-Infrared Graphene Plasmons

We theoretically investigate the plasmonic properties of mid-infrared graphene-based metamaterials and apply deep learning of a neural network for the inverse design. These artificial structures have square periodic arrays of graphene plasmonic resonators deposited on dielectric thin films. Optical...

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Bibliographic Details
Main Authors: Phan, Anh D., Nguyen, Cuong V., Pham, T. Linh, Tran, V. Huynh, Vu, D. Lam, Le, Anh-Tuan, Wakabayashi, Katsunori
Format: Article
Language:English
Published: MDPI 2020
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Online Access:https://dlib.phenikaa-uni.edu.vn/handle/PNK/403
https://doi.org/10.3390/cryst10020125
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Summary:We theoretically investigate the plasmonic properties of mid-infrared graphene-based metamaterials and apply deep learning of a neural network for the inverse design. These artificial structures have square periodic arrays of graphene plasmonic resonators deposited on dielectric thin films. Optical spectra vary significantly with changes in structural parameters. To validate our theoretical approach, we carry out finite difference time domain simulations and compare computational results with theoretical calculations. Quantitatively good agreements among theoretical predictions, simulations, and previous experiments allow us to employ this proposed theoretical model to generate reliable data for training and testing deep neural networks. By merging the pre-trained neural network with the inverse network, we implement calculations for inverse design of the graphene-based metameterials. We also discuss the limitation of the data-driven approach.